( Vol 45 , Issue 08 ) | 20 Nov 2025
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( Vol 45 , Issue 08 ) | 30 Nov 2025
Zhongguo Dianji Gongcheng Xuebao/Proceedings of the Chinese Society of Electrical Engineering (ISSN:0258-8013) is a monthly peer-reviewed scopus-indexed journal from 1985 to present. The publisher of this journal is Chinese Society for Electrical Engineering. PCSEE committed to gathering and disseminating excellent research achievements. The journal welcomes all kind of research/review/abstract papers regarding Engineering: Electrical and Electronic Engineering.
Electrical Engineering
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Nanotechnology
Turbines micro-turbines
Power quality
Energy optimization
HVDC transmission
Telecommunication Engineering
Integrated Engineering
Semiconductor chip
Advanced control theories and applications
FACTS devices
High voltage engineering
Electric drives
Power electronics
Electro-mechanical System Engineering
Electronic Engineering
Peripheral equipments
Machine design and optimization
Insulation systems
Electrical machines
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Electronic Engineering
There is a considerable uncertainty about the willingness of electric vehicle (EV) owners to respond to scheduling, which brings great challenges to the optimal scheduling of electric vehicles. Therefore, a three-dimensional Sigmoid cloud model of user response willingness is proposed to obtain the time-phased EV optimal scheduling strategy. First, the Copula entropy between the probability density functions of EV charging load for each historical day is analyzed in accordance with Hampel's criterion to identify the historical correlation days. The probability distribution of vehicle pa
New energy power generations are integrated into power grids using power electronic devices, which intensifies the harmonic pollution of power grids. High-precision online measurement of dynamic harmonic phasor is the key prerequisite for harmonic monitoring, localization and suppression. The Taylor Fourier transform method can track time-varying harmonic phasor with high accuracy, but the heavy computational burden and memory requirement in the frequency deviation and frequency dynamic changing conditions make it difficult to be applied to embedded measurement units with limited resources,
This paper first proposes the concept of committed carbon emission operation regions (CCEOR) to depict the low-carbon operation space (LCOS) of power system, which provides more comprehensive information for low-carbon operation analysis. Then, aiming at the construction of the CCEOR boundary (CCEORB) under the high-dimensional nonlinear spatio-temporal coupling variables of power system, this paper develops a CCEORB construction method based on data and model hybrid driven mechanism. With the feature engineering, neural network architecture based on attention mechanism and deep convolution
The large amount of wind power connected to offshore oil and gas platforms has a negative impact on the frequency stability of the system. In actual production, the adjustable and partial production loads represented by the injection pumps account for 30% of the total load, and their power variations or even start-up and shutdown have little impact on production. This type of load has not been directly involved in the frequency regulation of the offshore platform in previous studies, but has a great potential for frequency regulation and a fast response time. Without affecting the productio
Generation maintenance scheduling is an important part of the mid/long-term operation of power systems. It is very critical for maintaining the safe operation of generators and mid/long-term electric power and energy balance of power systems with high proportion of renewable power. Due to the complexity of maintenance constraints such as the duration and time interval, numerous integer variables and constraints are needed for the generation maintenance scheduling model, resulting in difficulties in model solution. Aiming at the above problems, this paper proposes an event-based generation m